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Aggregate Australian Takeovers: A Review of Markov Regime Switching Models

机译:澳大利亚的总体收购:马尔可夫政权转换模型的回顾

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摘要

This article reviews the case of modeling merger waves in the Australian market for the period 1972-2004. Three Markov switching models are examined, the Gaussian AR(1), Poisson AR(1), and State-Space autoregressive moving average (ARMA) (1,1), to find which gives the best fit. The State-Space Markov switching ARMA(1,1) model is found to be the best for describing Australian takeover activity as estimation results based on it have a lower Bayesian information criterion score than the other two models. Each model's ability to predict a 'wave' is then tested by including its estimated probability in a macroeconomic model to explain merger activity. The State-Space model also performs better because the inclusion of its estimated probability substantially increases the explanatory power of the regression model (measured by the regression adjusted R2). In addition, it predicted a takeover wave in 2009, which was closer to the actual incidents of takeover activity in the market at that time than the predictions of the other two models. The results are robust when the measure of takeover activity is changed from the number of takeover bids to the proportion of takeover bids relatively to the number of exchange-listed companies.
机译:本文回顾了在1972-2004年期间对澳大利亚市场的并购浪潮进行建模的案例。研究了三种Markov切换模型,即高斯AR(1),泊松AR(1)和状态空间自回归移动平均值(ARMA)(1,1),以找到最合适的模型。发现状态空间马尔可夫转换ARMA(1,1)模型是描述澳大利亚接管活动的最佳模型,因为基于它的估计结果,其贝叶斯信息准则得分低于其他两个模型。然后,通过将其估计的概率包括在宏观经济模型中以解释并购活动,来测试每种模型预测“波动”的能力。状态空间模型的性能也更好,因为包含其估计的概率会大大提高回归模型的解释能力(通过回归调整后的R2进行衡量)。此外,它还预测了2009年的收购浪潮,这比当时其他两种模型的预测更接近当时市场上的实际收购活动事件。当接管活动的度量从接管出价的数量更改为接管出价相对于交易所上市公司数量的比例时,结果是可靠的。

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  • 来源
    《International review of finance》 |2013年第4期|529-558|共30页
  • 作者

    Lien Duong;

  • 作者单位

    School of Accounting Curtin University Bentley campus GPO Box U1987 Perth, WA 6845 Australia;

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  • 原文格式 PDF
  • 正文语种 eng
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